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Can local-community-paradigm and epitopological learning enhance our understanding of how local brain connectivity is able to process, learn and memorize chronic pain?

机译:局部社区范式和流行病学学习能否增强我们对局部大脑连通性如何处理,学习和记忆慢性疼痛的理解?

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The mystery behind the origin of the pain and the difficulty to propose methodologies for its quantitative characterization fascinated philosophers (and then scientists) from the dawn of our modern society. Nowadays, studying patterns of information flow in mesoscale activity of brain networks is a valuable strategy to offer answers in computational neuroscience. In this paper, complex network analysis was performed on the time-varying brain functional connectomes of a rat model of persistent peripheral neuropathic pain, obtained by means of local field potential and spike train analysis. A wide range of topological network measures (14 in total, the code is publicly released at: https://github.com/biomedical-cybernetics/topological_measures_wide_analysis ) was employed to quantitatively investigate the rewiring mechanisms of the brain regions responsible for development and upkeep of pain along time, from three hours to 16?days after nerve injury. The time trend (across the days) of each network measure was correlated with a behavioural test for rat pain, and surprisingly we found that the rewiring mechanisms associated with two local topological measure, the local-community-paradigm and the power-lawness, showed very high statistical correlations (higher than 0.9, being the maximum value 1) with the behavioural test. We also disclosed clear functional connectivity patterns that emerged in association with chronic pain in the primary somatosensory cortex (S1) and ventral posterolateral (VPL) nuclei of thalamus. This study represents a pioneering attempt to exploit network science models in order to elucidate the mechanisms of brain region re-wiring and engram formations that are associated with chronic pain in mammalians. We conclude that the local-community-paradigm is a model of complex network organization that triggers a local learning rule, which seems associated to processing, learning and memorization of chronic pain in the brain functional connectivity. This rule is based exclusively on the network topology, hence was named epitopological learning .
机译:从现代社会的曙光起,哲学家(然后是科学家)就深深地了解了疼痛的根源之谜,以及提出其定量表征方法的难度。如今,研究大脑网络的中尺度活动中的信息流模式已成为在计算神经科学领域提供答案的有价值的策略。在本文中,对持久性周围神经性疼痛大鼠模型的时变脑功能连接体进行了复杂的网络分析,该模型通过局部场电势和峰值训练分析获得。广泛的拓扑网络措施(总共14种,代码在以下位置公开发布:https://github.com/biomedical-cybernetics/topological_measures_wide_analysis)用于定量研究负责发育和维持的大脑区域的重新布线机制从神经损伤后三个小时到16天的时间变化。每种网络度量的时间趋势(全天)都与对大鼠疼痛的行为测试相关联,令人惊讶的是,我们发现与两种局部拓扑度量(局部社区范式和幂律)相关的重新布线机制显示行为测试具有非常高的统计相关性(高于0.9,为最大值1)。我们还披露了与慢性躯体感觉皮层(S1)和丘脑腹外侧后外侧(VPL)核中的慢性疼痛相关的清晰功能连接模式。这项研究代表了开拓网络科学模型的开创性尝试,目的是阐明与哺乳动物慢性疼痛相关的大脑区域重新布线和印记形成的机制。我们得出结论,本地社区范式是触发本地学习规则的复杂网络组织的模型,该规则似乎与大脑功能连接中慢性疼痛的处理,学习和记忆有关。该规则仅基于网络拓扑,因此被称为表观学习。

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